首页> 外文期刊>Journal of cataract and refractive surgery >Neural network computer program to determine photorefractive keratectomy nomograms.
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Neural network computer program to determine photorefractive keratectomy nomograms.

机译:用神经网络计算机程序确定光折射性角膜切除术的诺模图。

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PURPOSE: To evaluate a commercially available neural network program for calculation of photorefractive keratectomy treatment nomograms. SETTING: University referral refractive surgery clinic. METHODS: PRK/LASIK Brain, a commercial neural network computer program, was trained using the demographics, preoperative clinical data, surgical parameters, and 1 year postoperative clinical data of 44 patients treated with a Summit Technology excimer laser using a 5.0 mm optical zone. The neural-network derived nomogram was compared with the standard treatment nomogram for each patient. The relative contribution of age, sex, keratometry, and intraocular pressure (IOP) to the predicted nomograms was also assessed. RESULTS: Nomograms produced by the neural network were qualitatively similar to the standard nomogram. The sequence of data entry during training affected the network's predictions. Entry ordered by outcome (as opposed to entry by chronological order) yielded a nomogram that was more consistent with the standard nomogram. However, both outcome- and chronologically ordered network-derived nomograms diverged from the standard nomogram in individual patients, including a subset for whom use of the standard nomogram yielded desired refractive results (within 0.25 diopter of emmetropia). Further analysis of the neural-network-derived nomograms revealed marked sensitivity to sex, age, keratometry readings, and IOP. CONCLUSIONS: Neural networks offer a potential means of individualizing treatment nomograms, to account for patient demographics, preoperative examination, surgeon style, and equipment bias. However, a data set of 44 patients was not sufficient to train the PRK/LASIK Brain network to accurately predict treatment parameters in individual cases in the training set. A larger training set or a different learning algorithm may be required to improve the neural network's performance.
机译:目的:评估可用于计算屈光性角膜切除术治疗诺模图的市售神经网络程序。地点:大学转诊屈光手术诊所。方法:对商业神经网络计算机程序PRK / LASIK Brain进行了人口统计,术前临床数据,手术参数和术后用1年期临床数据的培训,该研究采用44毫米Summit准分子激光在5.0 mm光学区域上进行了治疗。将神经网络得出的列线图与每个患者的标准治疗列线图进行比较。还评估了年龄,性别,角膜曲率和眼内压(IOP)对预测列线图的相对贡献。结果:神经网络产生的标线图在质量上与标准标线图相似。训练期间数据输入的顺序影响了网络的预测。按结果排序的输入(与按时间顺序输入的相反)产生的列线图与标准列线图更加一致。然而,个体患者的结局和按时间顺序排列的网络衍生列线图均偏离标准列线图,包括使用标准列线图产生所需屈光结果的子集(屈光度在0.25屈光度以内)。对来自神经网络的列线图的进一步分析表明,它对性别,年龄,角膜曲率法读数和IOP具有显着的敏感性。结论:神经网络为个体化治疗诺模图提供了一种潜在的手段,可以解决患者的人口统计学特征,术前检查,外科医生的风格和设备偏向。但是,有44名患者的数据集不足以训练PRK / LASIK脑网络以准确预测训练集中各个病例的治疗参数。可能需要更大的训练集或不同的学习算法来改善神经网络的性能。

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